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Department of Information Technology – Wireless & Cable Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool.

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Presentation on theme: "Department of Information Technology – Wireless & Cable Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool."— Presentation transcript:

1 Department of Information Technology – Wireless & Cable Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Future Network & Mobile Summit 2013 July 5, 2013margot.deruyck@intec.ugent.be ir. Margot Deruyck Prof. dr. ir. Wout Joseph Dr. ir. Emmeric Tanghe Prof. dr. ir. Luc Martens Ghent University/iMinds

2 Context & objective Methodology Case Study Conclusion Overview Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable

3 Context & objective (1) Taking user capacity demands into account to reduce power consumption in wireless access networks Margot Deruyck – Department of Information Technology – Wireless & Cable Extreme growth of mobile users the past few years From 20% in 2003 to 67% in 2009 Within ICT 9% is consumed by radio access networks Within radio access network 90% consumed by base stations 10% consumed by user devices → Focus on base stations to reduce power consumption in wireless access networks!!!

4 Context & objective (2) Objective Deployment tool for the design and optimisation of future energy-efficient wireless access networks  Key technique: sleep modes –Network responds to the actual bit rate demands of users Applied on a realistic case in Ghent, Belgium  Investigating three main functionalities added to LTE- Advanced –Carrier aggregation –Heterogeneous network –Extended support for MIMO Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable

5 Context & objective Methodology Case study Conclusion Overview Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable

6 Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable Power consumption model Macrocel Transceiver100 W Power amplifier156.3 W Digital signal proc.100 W Rectifier100 W Air conditioning225 W Backhaul80 W TOTAL1673.9 W Femtocel Transceiver1.7 W Power amplifier2.4 W Microprocessor3.2 W FPGA4.7 W TOTAL12 W

7 Energy efficiency metric: with  A = the area covered by the network (in km 2 )  P i = the power consumption of base station i (in W)  B i = the bit rate offered by base station i (in Mbps) The higher EE, the more energy-efficient [Mbps/W] Methodology Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable

8 Phase 1: generating traffic Deployment tool (2) Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable User distribution Poisson distribution with arrival rate λ(t)  λ(t) = sinusoidal curve scaled based on the population density – Integrated over the time interval Duration distribution Lognormal distribution  μ = 1.69s  s = 1.0041 Geometric distribution Users are uniformly distributed over the considered area Bit rate distribution 20%: 2 Mbps (mobile PC) 5%: 1 Mbps (tablet) 50%: 250 kbps (smartphone) 25%: 0.64 kbps (voice only user)

9 Deployment tool (5) Part II: traffic-based network design Try to connect user with active BS Lowest path loss  And lower than maximum allowable path loss Can the required capacity be offered Otherwise, activate a sleeping BS Same requirements as above When activated: can other already connected users be transferred? Otherwise, user can not be covered

10 Context & objective Methodology Case study Conclusion Overview Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable

11 Case study (1) Reference scenario Designing Advanced Enery-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable LTE-Advanced Suburban area  1.54 km 2  Ghent, Belgium 139 macrocell base stations SISO No carrier aggregation

12 Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable Results (1) MIMO For the considered case MIMO does not improve EE  Same coverage  Power consumption MIMO higher than SISO – Lower no. BS but not low enough

13 Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable Results (2) Carrier aggregation Higher no. of aggregated carriers = higher EE Higher bit rate available More users served by 1 BS Less BSs needed Highest efficiency Aggregating 5 carriers Power consumption reduced by 13.9% on average

14 Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable Results (3) Heterogeneous deployments Lowest efficiency Only macrocells  Higher power consumption Highest efficiency Femtocell with MIMO and CA  MIMO increases range  CA increases bit rate  Low power consumption Power consumption reduced by 99.3% on average  Compared to only macrocells  88.0% reduction for femtocells without MIMO and CA For this case  Further research necessary to confirm results!

15 Conclusion A capacity-based deployment tool for energy-efficient wireless access network is presented Minimal power consumption Responding to the actual bit rate demand of the user Key technique: introduction of sleep mode Tool applied on a realistic case in Ghent, Belgium for LTE-Advanced Average power consumption reduction of 13.9% obtained when aggregating 5 carriers compared to no carrier aggregation Average power consumption reduction of 99.3% obtained when using femtocells with CA and 8x8 MIMO compared to network with only SISO macrocell base stations Future networks should use LTE-Advanced Single use case: Further investigation is still needed to confirm results! Designing Advanced Energy-Efficient Wireless Access Networks by a Capacity Based Deployment Tool Margot Deruyck – Department of Information Technology – Wireless & Cable

16 Questions? Taking user capacity demands into account to reduce power consumption in wireless access networks Margot Deruyck – Department of Information Technology – Wireless & Cable


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